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Release Notes for Red Hat Integration 2022.Q2
What's new in Red Hat Integration
Abstract
Chapter 1. Red Hat Integration
Red Hat Integration is a comprehensive set of integration and event processing technologies for creating, extending, and deploying container-based integration services across hybrid and multicloud environments. Red Hat Integration provides an agile, distributed, and API-centric solution that organizations can use to connect and share data between applications and systems required in a digital world.
Red Hat Integration includes the following capabilities:
- Real-time messaging
- Cross-datacenter message streaming
- API connectivity
- Application connectors
- Enterprise integration patterns
- API management
- Data transformation
- Service composition and orchestration
Additional resources
Chapter 2. Camel Extensions for Quarkus release notes
2.1. Camel Extensions for Quarkus features
- Fast startup and low RSS memory
- Using the optimized build-time and ahead-of-time (AOT) compilation features of Quarkus, your Camel application can be pre-configured at build time resulting in fast startup times.
- Application generator
- Use the Quarkus application generator to bootstrap your application and discover its extension ecosystem.
- Highly configurable
All of the important aspects of a Camel Extensions for Quarkus application can be set up programmatically with CDI (Contexts and Dependency Injection) or via configuration properties. By default, a CamelContext is configured and automatically started for you.
Check out the Configuring your Quarkus applications guide for more information on the different ways to bootstrap and configure an application.
- Integrates with existing Quarkus extensions
- Camel Extensions for Quarkus provides extensions for libraries and frameworks that are used by some Camel components which inherit native support and configuration options.
2.2. Supported platforms, configurations, databases, and extensions
- For information about supported platforms, configurations, and databases in Camel Extensions for Quarkus version 2.2, see the Supported Configuration page on the Customer Portal (login required).
- For a list of Red Hat Camel Extensions for Quarkus extensions and the Red Hat support level for each extension, see the Extensions Overview chapter of the Camel Extensions for Quarkus Reference (login required).
2.3. Technology preview extensions
Red Hat does not provide support for Technology Preview components provided with this release of Camel Extensions for Quarkus. Items designated as Technology Preview in the Extensions Overview chapter of the Camel Extensions for Quarkus Reference have limited supportability, as defined by the Technology Preview Features Support Scope.
2.4. Known issues
- CAMEL-17158 AWS2 SQS When sending messages to a queue that has delay, the delay is not respected
If you create a queue with a delay, the messages sent using the
camel-aws2-sqs
component as a producer do not respect the delay that has been set for the queue.The reason for this behavior is that Camel sets '0s' as the default delay when sending messages that override the queue settings.
As a workaround, you should set the same delay settings when using the Camel producer. For example, if you create a queue with a 5s delay, you should also set a 5s delay when using the
camel-aws2-sqs
producer.- ENTESB-17763 Missing productised transitive deps of
camel-quarkus-jira
extensions -
Applications using the
camel-quarkus-jira
extension require an additional Maven repository https://packages.atlassian.com/maven-external/ to be configured either in the Mavensettings.xml
file or in thepom.xml
file of the application project. - ENTESB-18306 Missing productized
netty-transport-native-epoll:jar:linux-aarch_64
in NSQ, HDFS and Spark. The reason for this behavior is that the native epoll libraries are not included in the
camel-quarkus-2.2.1-product
build. However, as these libraries are not required for NSQ, HDFS or Spark components, the recommended workaround is to excludenetty-all
from your applications and includequarkus-netty
as a dependency.For example, you can update your application’s
pom.xml
for thehdfs
component as follows:<dependency> <groupId>org.apache.camel.quarkus</groupId> <artifactId>camel-quarkus-hdfs</artifactId> <exclusions> <exclusion> <groupId>io.netty</groupId> <artifactId>netty-all</artifactId> </exclusion> </exclusions> </dependency> <dependency> <groupId>io.quarkus</groupId> <artifactId>quarkus-netty</artifactId> </dependency>
2.5. Important notes
- Camel upgraded from version 3.11.1 to version 3.11.5
Camel Extensions for Quarkus version 2.2.1 has been upgraded from Camel version 3.11.1 to Camel version 3.11.5. For additional information about each intervening Camel patch release, please see the following:
- CVE-2021-44228 log4j-core: Remote code execution in Log4j 2.x
In Camel Extensions for Quarkus version 2.2.1, the following artifacts are no longer managed as the Camel Extensions for Quarkus extensions do not depend on these artifacts:
- org.apache.logging.log4j:log4j-1.2-api
- org.apache.logging.log4j:log4j-core
- org.apache.logging.log4j:log4j-jcl
- org.apache.logging.log4j:log4j-jul
- org.apache.logging.log4j:log4j-slf4j-impl
org.apache.logging.log4j:log4j-web
If your application adds a dependency for any of these artifacts, please make sure to use the latest version of Log4j 2.x to avoid any known CVEs related to versions before Log4j 2.17.1
NoteThe quarkus-bom still manages
org.apache.logging.log4j:log4j-api
.- Change of minimum required Apache Maven version to 3.8.1
- In this release of Camel Extensions for Quarkus version 2.2.1, the minimum version of Apache Maven required for compiling Red Hat build of Quarkus projects changes to 3.8.1. You must upgrade your installation of Apache Maven to version 3.8.1 to be able to compile projects based on Red Hat build of Quarkus 2.2. This upgrade is required because it addresses a security issue that can potentially make your Apache Maven builds vulnerable to man-in-the-middle attacks. For more information about this security vulnerability, see the entry about CVE-2021-26291 on the Red Hat Customer Portal.
2.6. Resolved issues
- ENTESB-18560 JSONPath output in Native mode different from JVM mode
Registration for reflection of a class used by the JSONPath language was missing. In previous versions of Camel Extensions for Quarkus, the output of JSONPath expressions in Native mode was as follows:
{name=Jan, age=28}
In Camel Extensions for Quarkus version 2.2.1, this issue has been resolved and the output of JSONPath expressions in Native mode is now as follows:
{"name":"Jan","age":28}
- ENTESB-18016 Quarkus Dev UI referring to community documentation instead of Red Hat product documentation
-
When running a project in Quarqus dev mode using
mvn quarkus:dev
, Quarkus provides the Dev UI via the endpoint/q/dev
. This interface displays deployed extensions containing links to the relevant documentation pages. In previous versions of Camel Extensions for Quarkus, these links pointed to community extension pages. In this release, these links have been updated to point to Red Hat product documentation pages. - ENTESB-17855 geronimo-jms_*_spec* artifacts replaced by jakarta.jms artifacts
-
In this release, the
org.apache.geronimo.specs:geronimo-jms_1.1_spec
andorg.apache.geronimo.specs:geronimo-jms_2.0_spec
artifacts used in various JMS related extensions have been replaced by the newer and vendor neutraljakarta.jms:jakarta.jms-api
equivalent. - ENTESB-17939 Replace javax.activation in favor of jakarta.activation
-
In this release, the
com.sun.activation:javax.activation
andjavax.activation:activation
artifacts used in various Camel Extensions for Quarkus extensions were replaced by the newercom.sun.activation:jakarta.activation
equivalent.
2.7. Deprecated Camel Extensions for Quarkus features
- Elasticsearch Rest extension
-
The
camel-quarkus-elasticsearch-rest
extension for Camel Extensions for Quarkus is deprecated in this release and scheduled for removal in a future release.
2.8. Additional resources
Chapter 3. Debezium release notes
Debezium is a distributed change data capture platform that captures row-level changes that occur in database tables and then passes corresponding change event records to Apache Kafka topics. Applications can read these change event streams and access the change events in the order in which they occurred. Debezium is built on Apache Kafka and is deployed and integrated with AMQ Streams.
The following topics provide release details:
3.1. Debezium database connectors
Debezium provides connectors based on Kafka Connect for the following common databases:
- Db2
- MongoDB
- MySQL
- Oracle (Technology Preview)
- PostgreSQL
SQL Server
NoteThe Db2 connector requires the use of the abstract syntax notation (ASN) libraries, which are available as a standard part of Db2 for Linux.
- To use the ASN libraries, you must have a license for IBM InfoSphere Data Replication (IIDR).
- You do not have to install IIDR to use the libraries.
- Currently, you cannot use the transaction metadata feature of the Debezium MongoDB connector with MongoDB 4.2.
-
The Debezium PostgreSQL connector requires you to use the
pgoutput
logical decoding output plug-in, which is the default for PostgreSQL versions 10 and later. - To use the Debezium Oracle connector, you must download a copy of the Oracle JDBC driver (ojdbc8.jar) from Oracle.
Additional resources
3.2. Debezium supported configurations
For information about Debezium supported configurations, including information about supported database versions, see the Debezium 1.7 Supported configurations page.
AMQ Streams new API version
Debezium runs on AMQ Streams 2.0.
AMQ Streams now supports the v1beta2
API version, which updates the schemas of the AMQ Streams custom resources. Older API versions are deprecated. After you upgrade to AMQ Streams 1.7, but before you upgrade to AMQ Streams 1.8 or later, you must upgrade your custom resources to use API version v1beta2
.
For more information, see the Debezium User Guide.
3.3. Debezium installation options
You can install Debezium with AMQ Streams on OpenShift or RHEL:
3.4. New Debezium features
Debezium 1.7 includes the following updates:
- New deployment mechanism
- You can now use AMQ Streams to deploy Debezium connectors by using a new AMQ Streams build mechanism that is based on Maven artifacts. For more information, see Debezium documentation.
- Debezium documentation
- Information about how to enable and use Debezium signaling tables to trigger ad hoc incremental snapshots: Sending signals to a Debezium connector.
Revised deployment instructions in the Debezium User Guide.
- Technology Preview features
Technology Preview features are not supported with Red Hat production service-level agreements (SLAs) and might not be functionally complete. Red Hat does not recommend implementing any Technology Preview features in production environments. Technology Preview features provide early access to upcoming product innovations, enabling you to test functionality and provide feedback during the development process. For more information about support scope, see Technology Preview Features Support Scope.
- Sending signals to a Debezium connector
- The Integration signaling mechanism provides a way to modify the behavior of a connector, or to trigger the connector to perform a one-time action, such as initiating an ad hoc incremental snapshot of a table.
- CloudEvents converter
- Emits change event records that conform to the CloudEvents specification. Avro encoding type is now supported for the CloudEvents envelope structure.
- Outbox event router
- SMT that supports the outbox pattern for safely and reliably exchanging data between multiple (micro) services.
- Debezium Oracle connector
Connector for Oracle Database. This release of the Debezium Oracle connector provides the following capabilities:
- Support tracking DDL changes for Oracle.
- Ability to perform snapshots without locking.
- Improved de-duplication checking for change event buffering.
- Improved SCN gap detection during streaming
- Mining can be scoped to a specific pluggable database (PDB).
- Ability to skip or exclude redo entries by username.
- Stability improvements.
- An improved DML statement parser.
- Ability to capture changes from multiple schemas within the same database or pluggable-database.
- New performance-related JMX metrics.
-
Ability to configure the precision of temporal values through the
time.precision.mode
property. - Compatibility with environments that run multiple Archiver process (ARC) processes.
- Ability to process messages across multiple archive log destinations (works alongside Oracle Data Guard).
3.5. Deprecated Debezium features
- MonitoredTables option for connector snapshot and streaming metrics
-
The
MonitoredTables
option for Debezium connector metrics is deprecated in this release and scheduled for removal in a future release. Use theCapturedTables
metric in its place.
Chapter 4. Camel K release notes
Camel K is a lightweight integration framework built from Apache Camel K that runs natively in the cloud on OpenShift. Camel K is specifically designed for serverless and microservice architectures. You can use Camel K to instantly run integration code written in Camel Domain Specific Language (DSL) directly on OpenShift.
Using Camel K with OpenShift Serverless and Knative, containers are automatically created only as needed and are autoscaled under load up and down to zero. This removes the overhead of server provisioning and maintenance and enables you to focus instead on application development.
Using Camel K with OpenShift Serverless and Knative Eventing, you can manage how components in your system communicate in an event-driven architecture for serverless applications. This provides flexibility and creates efficiencies using a publish/subscribe or event-streaming model with decoupled relationships between event producers and consumers.
4.1. Camel K features
The Camel K provides cloud-native integration with the following main features:
- Knative Serving for autoscaling and scale-to-zero
- Knative Eventing for event-driven architectures
- Performance optimizations using Quarkus runtime by default
- Camel integrations written in Java or YAML DSL
- Monitoring of integrations using Prometheus in OpenShift
- Quickstart tutorials
- Kamelet Catalog for connectors to external systems such as AWS, Jira, and Salesforce
- Support for Timer and Log Kamelets
- Metering for Camel K Operator and pods
- Support for IBM MQ connector
- Support for Oracle 19 database
4.2. Supported Configurations
For information about Camel K supported configurations, standards, and components, see the following Customer Portal articles:
4.2.1. Camel K Operator metadata
The Camel K includes updated Operator metadata used to install Camel K from the OpenShift OperatorHub. This Operator metadata includes the Operator bundle format for release packaging, which is designed for use with OpenShift Container Platform 4.6 or later.
Additional resources
4.3. Important notes
Important notes for the Red Hat Integration - Camel K release:
- Support for IBM MQ source connector in Camel K
- IBM MQ source connector kamelet is added to latest Camel K.
- Support for Oracle 19
- Oracle 19 is now supported in Camel K. Refer Supported configurations page for more information.
4.4. Supported Camel Quarkus extensions
This section lists the Camel Quarkus extensions that are supported for this release of Camel K (only when used inside a Camel K application).
These Camel Quarkus extensions are supported only when used inside a Camel K application. These Camel Quarkus extensions are not supported for use in standalone mode (without Camel K).
4.4.1. Supported Camel Quarkus connector extensions
The following table shows the Camel Quarkus connector extensions that are supported for this release of Camel K (only when used inside a Camel K application).
Name | Package |
---|---|
AWS 2 Kinesis |
|
AWS 2 Lambda |
|
AWS 2 S3 Storage Service |
|
AWS 2 Simple Notification System (SNS) |
|
AWS 2 Simple Queue Service (SQS) |
|
File |
|
FTP |
|
FTPS |
|
SFTP |
|
HTTP |
|
JMS |
|
Kafka |
|
Kamelets |
|
Metrics |
|
MongoDB |
|
Salesforce |
|
SQL |
|
Timer |
|
4.4.2. Supported Camel Quarkus dataformat extensions
The following table shows the Camel Quarkus dataformat extensions that are supported for this release of Camel K (only when used inside a Camel K application).
Name | Package |
---|---|
Avro |
|
Bindy (for CSV) |
|
JSON Jackson |
|
Jackson Avro |
|
4.4.3. Supported Camel Quarkus language extensions
In this release, Camel K supports the following Camel Quarkus language extensions (for use in Camel expressions and predicates):
- Constant
- ExchangeProperty
- File
- Header
- Ref
- Simple
- Tokenize
- JsonPath
4.4.4. Supported Camel K traits
In this release, Camel K supports the following Camel K traits:
- Builder trait
- Camel trait
- Container trait
- Dependencies trait
- Deployer trait
- Deployment trait
- Environment trait
- Jvm trait
- Kamelets trait
- Owner trait
- Platform trait
- Pull Secret trait
- Prometheus trait
- Quarkus trait
- Route trait
- Service trait
- Error Handler trait
4.5. Supported Kamelets
The following table lists the kamelets that are provided as OpenShift resources when you install the Camel K operator.
For details about these kamelets, go to: https://github.com/openshift-integration/kamelet-catalog/tree/kamelet-catalog-1.6
For information about how to use kamelets to connect applications and services, see https://access.redhat.com/documentation/en-us/red_hat_integration/2022.q1/html-single/integrating_applications_with_kamelets.
Technology Preview features are not supported with Red Hat production service level agreements (SLAs) and might not be functionally complete. Red Hat does not recommend using them in production.
These features provide early access to upcoming product features, enabling customers to test functionality and provide feedback during the development process. For more information about the support scope of Red Hat Technology Preview features, see https://access.redhat.com/support/offerings/techpreview.
Kamelet | File name | Type (Sink, Source, Action) |
---|---|---|
Avro Deserialize action |
| Action (data conversion) |
Avro Serialize action |
| Action (data conversion) |
AWS Redshift sink |
| Sink |
AWS 2 Kinesis sink |
| Sink |
AWS 2 Kinesis source |
| Source |
AWS 2 Lambda sink |
| Sink |
AWS 2 Simple Notification System sink |
| Sink |
AWS 2 Simple Queue Service sink |
| Sink |
AWS 2 Simple Queue Service source |
| Source |
AWS 2 Simple Queue Service FIFO sink |
| Sink |
AWS 2 S3 sink |
| Sink |
AWS 2 S3 source |
| Source |
AWS 2 S3 Streaming Upload sink |
| Sink |
Cassandra sink (Technology Preview) |
| Sink |
Cassandra source (Technology Preview) |
| Source |
Elasticsearch Index sink (Technology Preview) |
| Sink |
Extract Field action |
| Action |
FTP sink |
| Sink |
FTP source |
| Source |
Has Header Key Filter action |
| Action (data transformation) |
Hoist Field action |
| Action |
HTTP sink |
| Sink |
Insert Field action |
| Action (data transformation) |
Insert Header action |
| Action (data transformation) |
Is Tombstone Filter action |
| Action (data transformation) |
Jira source (Technology Preview) |
| Source |
JMS sink |
| Sink |
JMS source |
| Source |
JMS IBM MQ sink |
| Sink |
JMS IBM MQ source |
| Source |
JSON Deserialize action |
| Action (data conversion) |
JSON Serialize action |
| Action (data conversion) |
Kafka sink |
| Sink |
Kafka source |
| Source |
Kafka Topic Name Filter action |
| Action (data transformation) |
Log sink (for development and testing purposes) |
| Sink |
MariaDB sink |
| Sink |
Mask Fields action |
| Action (data transformation) |
Message TimeStamp Router action |
| Action (router) |
MongoDB sink |
| Sink |
MongoDB source |
| Source |
MySQL sink |
| Sink |
PostgreSQL sink |
| Sink |
Predicate filter action |
| Action (router/filter) |
Protobuf Deserialize action |
| Action (data conversion) |
Protobuf Serialize action |
| Action (data conversion) |
Regex Router action |
| Action (router) |
Replace Field action |
| Action |
Salesforce source |
| Source |
SFTP sink |
| Sink |
SFTP source |
| Source |
Slack source |
| Source |
SQL Server Database sink |
| Sink |
Telegram source (Technology Preview) |
| Source |
Timer source (for development and testing purposes) |
| Source |
TimeStamp Router action |
| Action (router) |
Value to Key action |
| Action (data transformation) |
4.6. Camel K known issues
The following known issues apply to the Camel K:
ENTESB-15306 - CRD conflicts between Camel K and Fuse Online
If an older version of Camel K has ever been installed in the same OpenShift cluster, installing Camel K from the OperatorHub fails due to conflicts with custom resource definitions. For example, this includes older versions of Camel K previously available in Fuse Online.
For a workaround, you can install Camel K in a different OpenShift cluster, or enter the following command before installing Camel K:
$ oc get crds -l app=camel-k -o json | oc delete -f -
ENTESB-15858 - Added ability to package and run Camel integrations locally or as container images
Packaging and running Camel integrations locally or as container images is not currently included in the Camel K and has community-only support.
For more details, see the Apache Camel K community.
ENTESB-16477 - Unable to download jira client dependency with productized build
When using Camel K operator, the integration is unable to find dependencies for jira client. The work around is to add the atlassian repo manually.
apiVersion: camel.apache.org/v1 kind: IntegrationPlatform metadata: labels: app: camel-k name: camel-k spec: configuration: - type: repository value: <atlassian repo here>
ENTESB-17033 - Camel-K ElasticsearchComponent options ignored
When configuring the Elasticsearch component, the Camel K ElasticsearchComponent options are ignored. The work around is to add getContext().setAutowiredEnabled(false)
when using the Elasticsearch component.
ENTESB-17061 - Can’t run mongo-db-source kamelet route with non-admin user - Failed to start route mongodb-source-1 because of null
It is not possible to run mongo-db-source kamelet
route with non-admin user credentials. Some part of the component require admin credentials hence it is not possible run the route as a non-admin user.
4.7. Camel K Fixed Issues
The following sections list the issues that have been fixed in Camel K 1.6.6.
4.7.1. Enhancements in Camel K 1.6.6
The following table lists the enhancements in Camel K 1.6.6.
Issue | Description |
---|---|
Revisit KNative documentation from the Camel-K pov | |
Devise a testing strategy for Quickstarts and Kamelets | |
Add AWS Redshift sink Kamelet | |
Camel K 1.6.x to bring in the new base layer images for Openjdk and Zlib |
4.7.2. Bugs resolved in Camel K 1.6.6
The following table lists the resolved bugs in Camel K 1.6.6.
Issue | Description |
---|---|
camel-slack producer fails after 1st message sent | |
eventstreaming quickstart: yaks test fails | |
kamel get reports running status when the pod is not running | |
kameletBinding GoogleSheetsSource delay parameter malfunctioning | |
Kamelets: Elasticsearch index sink indexId random generator for null | |
Cassandra sink kamelet fails with unknown property | |
Default value for Consistency in Cassandra source is not usable | |
wrong image with kamel install --olm=false | |
Quickstart camel-k-example-event-streaming creates invalid kafka instance | |
Typo in yaks test OpenAQConsumer.feature of quickstart Camel K: Event Streaming Example | |
wrong XSD url generated with XML initialiser | |
Camel-k operator image grade B |
Chapter 5. Red Hat Integration Operators
Red Hat Integration 2022.Q2 introduces Red Hat Integration Operator 1.3.
Red Hat Integration provides Operators to automate the deployment of Red Hat Integration components on OpenShift. You can use Red Hat Integration Operator to manage those Operators.
Alternatively, you can manage each component Operator individually. This section introduces Operators and provides links to detailed information on how to use Operators to deploy Red Hat Integration components.
5.1. What Operators are
Operators are a method of packaging, deploying, and managing a Kubernetes application. They take human operational knowledge and encode it into software that is more easily shared with consumers to automate common or complex tasks.
In OpenShift Container Platform 4.x, the Operator Lifecycle Manager (OLM) helps users install, update, and generally manage the life cycle of all Operators and their associated services running across their clusters. It is part of the Operator Framework, an open source toolkit designed to manage Kubernetes native applications (Operators) in an effective, automated, and scalable way.
The OLM runs by default in OpenShift Container Platform 4.x, which aids cluster administrators in installing, upgrading, and granting access to Operators running on their cluster. The OpenShift Container Platform web console provides management screens for cluster administrators to install Operators, as well as grant specific projects access to use the catalog of Operators available on the cluster.
OperatorHub is the graphical interface that OpenShift cluster administrators use to discover, install, and upgrade Operators. With one click, these Operators can be pulled from OperatorHub, installed on the cluster, and managed by the OLM, ready for engineering teams to self-service manage the software in development, test, and production environments.
Additional resources
- For more information about Operators, see the OpenShift documentation.
5.2. Red Hat Integration component Operators
You can install and upgrade each Red Hat Integration component Operator individually, for example, using the 3scale Operator, the Camel K Operator, and so on.
5.2.1. 3scale Operators
5.2.2. AMQ Operators
5.2.3. Camel K Operator
5.2.4. Fuse Operators
5.2.5. Service Registry Operator
5.3. Red Hat Integration Operator (deprecated)
You can use Red Hat Integration Operator 1.3 to install and upgrade multiple Red Hat Integration component Operators:
- 3scale
- 3scale APIcast
- AMQ Broker
- AMQ Interconnect
- AMQ Streams
- API Designer
- Camel K
- Fuse Console
- Fuse Online
- Service Registry
The Red Hat Integration Operator has been deprecated and will be removed in the future. It will be available from the OperatorHub in OpenShift 4.6 to 4.10. The individual Red Hat Integration component Operators will continue to be supported, which you can install separately.
5.3.1. Supported components
Before installing the Operators using Red Hat Integration Operator 1.3, check the updates in the Release Notes of the components. The Release Notes for the supported version describe any additional upgrade requirements.
- Release Notes for Red Hat 3scale API Management 2.10 On-premises
- Release Notes for Red Hat AMQ Broker 7.8
- Release Notes for Red Hat AMQ Interconnect 1.10
- Release Notes for Red Hat AMQ Streams 2.0 on OpenShift
- Release Notes for Red Hat Fuse 7.10 (Fuse and API Designer)
- Release Notes for Red Hat Integration 2021.Q3 (Red Hat Integration - Service Registry 2.0 release notes)
- Release Notes for Red Hat Integration 2021.Q4 (Camel K release notes)
AMQ Streams new API version
Red Hat Integration Operator 1.3 installs the Operator for AMQ Streams 2.0.
You must upgrade your custom resources to use API version v1beta2
before upgrading to AMQ Streams version 1.8 or later.
AMQ Streams 1.7 introduced the v1beta2
API version, which updates the schemas of the AMQ Streams custom resources. Older API versions are now deprecated. After you have upgraded to AMQ Streams 1.7, and before you upgrade to AMQ Streams 2.0, you must upgrade your custom resources to use API version v1beta2
.
If you are upgrading from an AMQ Streams version prior to version 1.7:
- Upgrade to AMQ Streams 1.7
- Convert the custom resources to v1beta2
- Upgrade to AMQ Streams 2.0
For more information, refer to the following documentation:
Upgrade of the AMQ Streams Operator to version 2.0 will fail in clusters if custom resources and CRDs haven’t been converted to version v1beta2
. The upgrade will be stuck on Pending
. If this happens, do the following:
- Perform the steps described in the Red Hat Solution, Forever pending cluster operator upgrade.
- Scale the Integration Operator to zero, and then back to one, to trigger an installation of the AMQ Streams 2.0 Operator.
Service Registry 2.0 migration
Red Hat Integration Operator installs Red Hat Integration - Service Registry 2.0.
Service Registry 2.0 does not replace Service Registry 1.x installations, which need to be manually uninstalled.
For information on migrating from Service Registry version 1.x to 2.0, see the Service Registry 2.0 release notes.
5.3.2. Support life cycle
To remain in a supported configuration, you must deploy the latest Red Hat Integration Operator version. Each Red Hat Integration Operator release version is only supported for 3 months.
5.3.3. Fixed issues
There are no fixed issues for Red Hat Integration Operator 1.3.
Additional resources
- For more details on managing multiple Red Hat Integration component Operators, see Installing the Red Hat Integration Operator on OpenShift.